AI-Driven Secure Data Sharing: A Trustworthy and Privacy-Preserving Approach
Journal:
arXiv
Published Date:
Jan 26, 2025
Abstract
In the era of data-driven decision-making, ensuring the privacy and security
of shared data is paramount across various domains. Applying existing deep
neural networks (DNNs) to encrypted data is critical and often compromises
performance, security, and computational overhead. To address these
limitations, this research introduces a secure framework consisting of a
learnable encryption method based on the block-pixel operation to encrypt the
data and subsequently integrate it with the Vision Transformer (ViT). The
proposed framework ensures data privacy and security by creating unique
scrambling patterns per key, providing robust performance against adversarial
attacks without compromising computational efficiency and data integrity. The
framework was tested on sensitive medical datasets to validate its efficacy,
proving its ability to handle highly confidential information securely. The
suggested framework was validated with a 94\% success rate after extensive
testing on real-world datasets, such as MRI brain tumors and histological scans
of lung and colon cancers. Additionally, the framework was tested under diverse
adversarial attempts against secure data sharing with optimum performance and
demonstrated its effectiveness in various threat scenarios. These comprehensive
analyses underscore its robustness, making it a trustworthy solution for secure
data sharing in critical applications.